Ricardo
(2022-11-30 23:24):
#paper http://dx.doi.org/10.1016/j.neuroimage.2017.07.008 Quicksilver: Fast predictive image registration – A deep learning approach 介绍了一种快速变形图像配准方法——Quicksilver。图像对的配准通过直接基于图像外观的变形模型的patch-wise预测工作。采用深度编码器-解码器网络作为预测模型。虽然预测策略是通用的,但作者主要关注大变形Diffeomorphic Metric Mapping (LDDMM)模型的预测。具体地说,作者预测了LDDMM的动量参数化,这促进了patch-wise预测策略,同时保持了LDDMM的理论性质,如保证微分同胚映射以获得足够强的正则化。作者还提供了预测网络的概率版本,可以在测试期间进行采样,以计算预测变形的不确定性。最后,作者引入了一种新的修正网络,它大大提高了现有预测网络的预测精度。
Quicksilver: Fast predictive image registration - A deep learning approach
翻译
Abstract:
This paper introduces Quicksilver, a fast deformable image registration method. Quicksilver registration for image-pairs works by patch-wise prediction of a deformation model based directly on image appearance. A deep encoder-decoder network is used as the prediction model. While the prediction strategy is general, we focus on predictions for the Large Deformation Diffeomorphic Metric Mapping (LDDMM) model. Specifically, we predict the momentum-parameterization of LDDMM, which facilitates a patch-wise prediction strategy while maintaining the theoretical properties of LDDMM, such as guaranteed diffeomorphic mappings for sufficiently strong regularization. We also provide a probabilistic version of our prediction network which can be sampled during the testing time to calculate uncertainties in the predicted deformations. Finally, we introduce a new correction network which greatly increases the prediction accuracy of an already existing prediction network. We show experimental results for uni-modal atlas-to-image as well as uni-/multi-modal image-to-image registrations. These experiments demonstrate that our method accurately predicts registrations obtained by numerical optimization, is very fast, achieves state-of-the-art registration results on four standard validation datasets, and can jointly learn an image similarity measure. Quicksilver is freely available as an open-source software.
翻译
Keywords: